Rosa Maria J, Portugal Liana, Hahn Tim, Fallgatter Andreas J, Garrido Marta I, Shawe-Taylor John, Mourao-Miranda Janaina
Department of Computer Science, Centre for Computational Statistics and Machine Learning, University College London, London, UK; Centre for Neuroimaging Sciences, Department of Neuroimaging, Institute of Psychiatry, King's College London, London, UK.
Department of Computer Science, Centre for Computational Statistics and Machine Learning, University College London, London, UK; LABNEC, Universidade Federal Fluminense, Rio de Janeiro, Brazil.
Neuroimage. 2015 Jan 15;105:493-506. doi: 10.1016/j.neuroimage.2014.11.021. Epub 2014 Nov 15.
Pattern recognition applied to whole-brain neuroimaging data, such as functional Magnetic Resonance Imaging (fMRI), has proved successful at discriminating psychiatric patients from healthy participants. However, predictive patterns obtained from whole-brain voxel-based features are difficult to interpret in terms of the underlying neurobiology. Many psychiatric disorders, such as depression and schizophrenia, are thought to be brain connectivity disorders. Therefore, pattern recognition based on network models might provide deeper insights and potentially more powerful predictions than whole-brain voxel-based approaches. Here, we build a novel sparse network-based discriminative modeling framework, based on Gaussian graphical models and L1-norm regularized linear Support Vector Machines (SVM). In addition, the proposed framework is optimized in terms of both predictive power and reproducibility/stability of the patterns. Our approach aims to provide better pattern interpretation than voxel-based whole-brain approaches by yielding stable brain connectivity patterns that underlie discriminative changes in brain function between the groups. We illustrate our technique by classifying patients with major depressive disorder (MDD) and healthy participants, in two (event- and block-related) fMRI datasets acquired while participants performed a gender discrimination and emotional task, respectively, during the visualization of emotional valent faces.
应用于全脑神经成像数据(如功能磁共振成像(fMRI))的模式识别,已成功用于区分精神疾病患者与健康参与者。然而,从基于全脑体素的特征中获得的预测模式,很难从潜在的神经生物学角度进行解释。许多精神疾病,如抑郁症和精神分裂症,被认为是大脑连接障碍。因此,基于网络模型的模式识别可能比基于全脑体素的方法提供更深入的见解和潜在更强有力的预测。在此,我们基于高斯图形模型和L1范数正则化线性支持向量机(SVM),构建了一个新颖的基于稀疏网络的判别建模框架。此外,所提出的框架在模式的预测能力和可重复性/稳定性方面均进行了优化。我们的方法旨在通过产生稳定的大脑连接模式,为基于体素的全脑方法提供更好的模式解释,这些模式是两组之间大脑功能判别变化的基础。我们通过在两个(与事件和与块相关的)fMRI数据集中对重度抑郁症(MDD)患者和健康参与者进行分类,来说明我们的技术,这两个数据集分别是在参与者观看情绪效价面孔时执行性别歧视和情感任务时采集的。